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Learning Nonprehensile Dynamic Manipulation: Sim2real Vision-Based Policy With a Surgical Robot

Radian Gondokaryono, Mustafa Haiderbhai, Sai Aneesh Suryadevara, Lüder A. Kahrs

发表年份
2023
引用次数
4

摘要

Surgical tasks such as tissue retraction, tissue exposure, and needle suturing remain challenging in autonomous surgical robotics. One challenge in these tasks is nonprehensile manipulation such as pushing tissue, pressing cloth, and needle threading. In this work, we isolate the problem of nonprehensile manipulation by implementing a vision-based reinforcement learning agent for rolling a block, a task that has complex dynamics interactions, small scale objects, and a narrow field of view. We train agents in simulation with a reward formulation that encourages efficient and safe learning, domain randomization that allows for robust sim2real transfer, and a recurrent memory layer that enables reasoning about randomized dynamics parameters. We successfully transfer our agents from simulation to real and show robust execution of our vision-based policy with a 96.3% success rate. We analyze and discuss the success rate, trajectories, and recovery behaviours for various models that are either using the recurrent memory layer or are trained with a difficult physics environment.

关键词

Reinforcement learningComputer scienceTask (project management)Artificial intelligenceRoboticsBlock (permutation group theory)Transfer of learningRobotHuman–computer interactionComputer vision

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